English

Trainable Proximal Gradient Descent Based Channel Estimation for mmWave Massive MIMO Systems

Signal Processing 2023-03-07 v2

Abstract

In this letter, we address the problem of millimeter-Wave channel estimation in massive MIMO communication systems. Leveraging the sparsity of the mmWave channel in the beamspace, we formulate the estimation problem as a sparse signal recovery problem. To this end, we propose a deep learning based trainable proximal gradient descent network (TPGD-Net). The TPGD-Net unfolds the iterative proximal gradient descent (PGD) algorithm into a layer-wise network, with the gradient descent step size set as a trainable parameter. Additionally, we replace the proximal operator in the PGD algorithm with a neural network that exploits data-driven prior channel information to perform the proximal operation implicitly. To further enhance the transfer of feature information across layers, we introduce the cross-layer feature attention fusion module into the TPGD-Net. Our simulation results on the Saleh-Valenzuela channel model and the DeepMIMO dataset demonstrate the superior performance of TPGD-Net compared to state-of-the-art mmWave channel estimators.

Keywords

Cite

@article{arxiv.2212.12214,
  title  = {Trainable Proximal Gradient Descent Based Channel Estimation for mmWave Massive MIMO Systems},
  author = {Peicong Zheng and Xuantao Lyu and Yi Gong},
  journal= {arXiv preprint arXiv:2212.12214},
  year   = {2023}
}
R2 v1 2026-06-28T07:50:16.447Z